TY - JOUR
T1 - Assessment of crohn's disease lesions in wireless capsule endoscopy images
AU - Kumar, Rajesh
AU - Zhao, Qian
AU - Seshamani, Sharmishtaa
AU - Mullin, Gerard
AU - Hager, Gregory
AU - Dassopoulos, Themistocles
N1 - Funding Information:
Manuscript received January 17, 2011; revised May 10, 2011, August 7, 2011, and October 7, 2011; accepted October 10, 2011. Date of publication October 18, 2011; date of current version January 20, 2012. This work was supported in part by the National Institutes of Health under Grant 5R21EB008227-02 and Johns Hopkins University internal funds. Asterisk indicates corresponding author.
PY - 2012/2
Y1 - 2012/2
N2 - Capsule endoscopy (CE) provides noninvasive access to a large part of the small bowel that is otherwise inaccessible without invasive and traumatic treatment. However, it also produces large amounts of data (approximately 50000 images) that must be then manually reviewed by a clinician. Such large datasets provide an opportunity for application of image analysis and supervised learning methods. Automated analysis of CE images has only focused on detection, and often only for bleeding. Compared to these detection approaches, we explored assessment of discrete disease for lesions created by mucosal inflammation in Crohns disease (CD). Our work is the first study to systematically explore supervised classification for CD lesions, a classifier cascade to classify discrete lesions, as well as quantitative assessment of lesion severity. We used a well-developed database of 47 studies for evaluation of these methods. The developed methods show high agreement with ground truth severity ratings manually assigned by an expert, and good precision (90 for lesion detection) and recall (90) for lesions of varying severity.
AB - Capsule endoscopy (CE) provides noninvasive access to a large part of the small bowel that is otherwise inaccessible without invasive and traumatic treatment. However, it also produces large amounts of data (approximately 50000 images) that must be then manually reviewed by a clinician. Such large datasets provide an opportunity for application of image analysis and supervised learning methods. Automated analysis of CE images has only focused on detection, and often only for bleeding. Compared to these detection approaches, we explored assessment of discrete disease for lesions created by mucosal inflammation in Crohns disease (CD). Our work is the first study to systematically explore supervised classification for CD lesions, a classifier cascade to classify discrete lesions, as well as quantitative assessment of lesion severity. We used a well-developed database of 47 studies for evaluation of these methods. The developed methods show high agreement with ground truth severity ratings manually assigned by an expert, and good precision (90 for lesion detection) and recall (90) for lesions of varying severity.
KW - Content-based image retrieval
KW - Crohns disease
KW - statistical classification
KW - wireless capsule endoscopy (CE)
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U2 - 10.1109/TBME.2011.2172438
DO - 10.1109/TBME.2011.2172438
M3 - Article
C2 - 22020661
AN - SCOPUS:84863401997
SN - 0018-9294
VL - 59
SP - 355
EP - 362
JO - IRE transactions on medical electronics
JF - IRE transactions on medical electronics
IS - 2
M1 - 6051474
ER -